dylanplummer commited on
Commit
661eb89
·
1 Parent(s): b3d7da6

rearrange, add more text stats

Browse files
Files changed (1) hide show
  1. app.py +11 -7
app.py CHANGED
@@ -98,9 +98,13 @@ def full_report():
98
  df = cached_report.copy(deep=True)
99
 
100
  total_jumps = int(df['jumps'].sum())
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- print(f"Total jumps: {total_jumps}")
 
 
 
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  df['iso'] = df['iso'].map(alpha_2_map)
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  df['jumps'] = df['jumps'].astype(int)
 
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  country_df = df.groupby(['country', 'iso']).sum().reset_index()
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  country_df = country_df.sort_values(by=['jumps'], ascending=False)
@@ -127,7 +131,7 @@ def full_report():
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  city_df = city_df[city_df['city'] != '(not set)']
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  city_df['city'] = city_df.apply(lambda row: row['city'] + ', ' + row['iso'], axis=1)
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  city_df = city_df[city_df['city'].isin(top_10_cities)].reset_index(drop=True)
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- city_df = city_df.sort_values(by=['jumps'], ascending=True)
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  avg = px.bar(city_df,
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  y='city', x='jumps', color='day',
@@ -189,7 +193,7 @@ def full_report():
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  trendline_scope='overall',
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  template="plotly_dark")
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- return f"# Total Jumps: {total_jumps:,}", total, avg, total_map, jumps_over_time, county_map, per_day_plot
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194
 
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  with gr.Blocks(theme='WeixuanYuan/Soft_dark') as demo:
@@ -197,16 +201,16 @@ with gr.Blocks(theme='WeixuanYuan/Soft_dark') as demo:
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  total_jumps_label = gr.Markdown("Total Jumps: 0")
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  with gr.Row():
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  map_fig = gr.Plot(label="Map")
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- with gr.Row():
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- county_map = gr.Plot(label="US Map")
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- with gr.Row():
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- per_day_plot = gr.Plot(label="Jumps per Day")
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  with gr.Row():
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  jumps_over_time = gr.Plot(label="Jumps Over Time")
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  with gr.Row():
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  total_plot = gr.Plot(label="Top 10 Countries")
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  with gr.Row():
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  avg_plot = gr.Plot(label="Top 10 Cities")
 
 
 
 
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  outputs = [total_jumps_label, total_plot, avg_plot, map_fig, jumps_over_time, county_map, per_day_plot]
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  dep = demo.load(full_report, None, outputs)
 
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  df = cached_report.copy(deep=True)
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100
  total_jumps = int(df['jumps'].sum())
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+ unique_countries = df['country'].nunique()
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+ unique_cities = df['city'].nunique()
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+
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+ print(f"Total jumps: {total_jumps}, unique countries: {unique_countries}, unique cities: {unique_cities}")
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  df['iso'] = df['iso'].map(alpha_2_map)
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  df['jumps'] = df['jumps'].astype(int)
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+ df['city'] = df.apply(lambda row: row['city'] if row['country'] != 'Bermuda' else 'Hamilton', axis=1)
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  country_df = df.groupby(['country', 'iso']).sum().reset_index()
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  country_df = country_df.sort_values(by=['jumps'], ascending=False)
 
131
  city_df = city_df[city_df['city'] != '(not set)']
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  city_df['city'] = city_df.apply(lambda row: row['city'] + ', ' + row['iso'], axis=1)
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  city_df = city_df[city_df['city'].isin(top_10_cities)].reset_index(drop=True)
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+ city_df = city_df.sort_values(by=['day', 'jumps'], ascending=True)
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  avg = px.bar(city_df,
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  y='city', x='jumps', color='day',
 
193
  trendline_scope='overall',
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  template="plotly_dark")
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+ return f"# {total_jumps:,} total jumps in {unique_cities:,} cities across {unique_countries:,} countries", total, avg, total_map, jumps_over_time, county_map, per_day_plot
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198
 
199
  with gr.Blocks(theme='WeixuanYuan/Soft_dark') as demo:
 
201
  total_jumps_label = gr.Markdown("Total Jumps: 0")
202
  with gr.Row():
203
  map_fig = gr.Plot(label="Map")
 
 
 
 
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  with gr.Row():
205
  jumps_over_time = gr.Plot(label="Jumps Over Time")
206
  with gr.Row():
207
  total_plot = gr.Plot(label="Top 10 Countries")
208
  with gr.Row():
209
  avg_plot = gr.Plot(label="Top 10 Cities")
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+ with gr.Row():
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+ per_day_plot = gr.Plot(label="Jumps per Day")
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+ with gr.Row():
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+ county_map = gr.Plot(label="US Map")
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  outputs = [total_jumps_label, total_plot, avg_plot, map_fig, jumps_over_time, county_map, per_day_plot]
216
  dep = demo.load(full_report, None, outputs)